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A modular cGAN classification framework: Application to colorectal tumor detection.


ABSTRACT: Automatic identification of tissue structures in the analysis of digital tissue biopsies remains an ongoing problem in digital pathology. Common barriers include lack of reliable ground truth due to inter- and intra- reader variability, class imbalances, and inflexibility of discriminative models. To overcome these barriers, we are developing a framework that benefits from a reliable immunohistochemistry ground truth during labeling, overcomes class imbalances through single task learning, and accommodates any number of classes through a minimally supervised, modular model-per-class paradigm. This study explores an initial application of this framework, based on conditional generative adversarial networks, to automatically identify tumor from non-tumor regions in colorectal H&E slides. The average precision, sensitivity, and F1 score during validation was 95.13?±?4.44%, 93.05?±?3.46%, and 94.02?±?3.23% and for an external test dataset was 98.75?±?2.43%, 88.53?±?5.39%, and 93.31?±?3.07%, respectively. With accurate identification of tumor regions, we plan to further develop our framework to establish a tumor front, from which tumor buds can be detected in a restricted region. This model will be integrated into a larger system which will quantitatively determine the prognostic significance of tumor budding.

SUBMITTER: Tavolara TE 

PROVIDER: S-EPMC6908583 | biostudies-literature | 2019 Dec

REPOSITORIES: biostudies-literature

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A modular cGAN classification framework: Application to colorectal tumor detection.

Tavolara Thomas E TE   Niazi M Khalid Khan MKK   Arole Vidya V   Chen Wei W   Frankel Wendy W   Gurcan Metin N MN  

Scientific reports 20191212 1


Automatic identification of tissue structures in the analysis of digital tissue biopsies remains an ongoing problem in digital pathology. Common barriers include lack of reliable ground truth due to inter- and intra- reader variability, class imbalances, and inflexibility of discriminative models. To overcome these barriers, we are developing a framework that benefits from a reliable immunohistochemistry ground truth during labeling, overcomes class imbalances through single task learning, and a  ...[more]

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